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A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range

Light intensities (photons s(–1) μm(–2)) in a natural scene vary over several orders of magnitude from shady woods to direct sunlight. A major challenge facing the visual system is how to map such a large dynamic input range into its limited output range, so that a signal is neither buried in noise...

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Autores principales: Song, Zhuoyi, Juusola, Mikko
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5556150/
https://www.ncbi.nlm.nih.gov/pubmed/28369994
http://dx.doi.org/10.1113/JP273614
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author Song, Zhuoyi
Juusola, Mikko
author_facet Song, Zhuoyi
Juusola, Mikko
author_sort Song, Zhuoyi
collection PubMed
description Light intensities (photons s(–1) μm(–2)) in a natural scene vary over several orders of magnitude from shady woods to direct sunlight. A major challenge facing the visual system is how to map such a large dynamic input range into its limited output range, so that a signal is neither buried in noise in darkness nor saturated in brightness. A fly photoreceptor has achieved such a large dynamic range; it can encode intensity changes from single to billions of photons, outperforming man‐made light sensors. This performance requires powerful light adaptation, the neural implementation of which has only become clear recently. A computational fly photoreceptor model, which mimics the real phototransduction processes, has elucidated how light adaptation happens dynamically through stochastic adaptive quantal information sampling. A Drosophila R1–R6 photoreceptor's light sensor, the rhabdomere, has 30,000 microvilli, each of which stochastically samples incoming photons. Each microvillus employs a full G‐protein‐coupled receptor signalling pathway to adaptively transduce photons into quantum bumps (QBs, or samples). QBs then sum the macroscopic photoreceptor responses, governed by four quantal sampling factors (limitations): (i) the number of photon sampling units in the cell structure (microvilli), (ii) sample size (QB waveform), (iii) latency distribution (time delay between photon arrival and emergence of a QB), and (iv) refractory period distribution (time for a microvillus to recover after a QB). Here, we review how these factors jointly orchestrate light adaptation over a large dynamic range. [Image: see text]
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spelling pubmed-55561502017-08-16 A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range Song, Zhuoyi Juusola, Mikko J Physiol Special section reviews: Shining new light into the workings of photoreceptors and visual interneurons Light intensities (photons s(–1) μm(–2)) in a natural scene vary over several orders of magnitude from shady woods to direct sunlight. A major challenge facing the visual system is how to map such a large dynamic input range into its limited output range, so that a signal is neither buried in noise in darkness nor saturated in brightness. A fly photoreceptor has achieved such a large dynamic range; it can encode intensity changes from single to billions of photons, outperforming man‐made light sensors. This performance requires powerful light adaptation, the neural implementation of which has only become clear recently. A computational fly photoreceptor model, which mimics the real phototransduction processes, has elucidated how light adaptation happens dynamically through stochastic adaptive quantal information sampling. A Drosophila R1–R6 photoreceptor's light sensor, the rhabdomere, has 30,000 microvilli, each of which stochastically samples incoming photons. Each microvillus employs a full G‐protein‐coupled receptor signalling pathway to adaptively transduce photons into quantum bumps (QBs, or samples). QBs then sum the macroscopic photoreceptor responses, governed by four quantal sampling factors (limitations): (i) the number of photon sampling units in the cell structure (microvilli), (ii) sample size (QB waveform), (iii) latency distribution (time delay between photon arrival and emergence of a QB), and (iv) refractory period distribution (time for a microvillus to recover after a QB). Here, we review how these factors jointly orchestrate light adaptation over a large dynamic range. [Image: see text] John Wiley and Sons Inc. 2017-05-17 2017-08-15 /pmc/articles/PMC5556150/ /pubmed/28369994 http://dx.doi.org/10.1113/JP273614 Text en © 2017 The Authors. The Journal of Physiology published by John Wiley & Sons Ltd on behalf of The Physiological Society This is an open access article under the terms of the Creative Commons Attribution (http://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Special section reviews: Shining new light into the workings of photoreceptors and visual interneurons
Song, Zhuoyi
Juusola, Mikko
A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
title A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
title_full A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
title_fullStr A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
title_full_unstemmed A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
title_short A biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
title_sort biomimetic fly photoreceptor model elucidates how stochastic adaptive quantal sampling provides a large dynamic range
topic Special section reviews: Shining new light into the workings of photoreceptors and visual interneurons
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5556150/
https://www.ncbi.nlm.nih.gov/pubmed/28369994
http://dx.doi.org/10.1113/JP273614
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